Seismic performance assessments of school buildings in Taiwan using artificial intelligence theories
ISSN: 0264-4401
Article publication date: 28 May 2020
Issue publication date: 28 October 2020
Abstract
Purpose
Taiwan experiences frequent seismic activity. Major earthquakes in recent history have seriously damaged the school buildings. School buildings in Taiwan are intended to serve both as places of education and as temporary shelters in the aftermath of major earthquakes. Therefore, the seismic performance assessments of school buildings are critical issues that deserve investigation.
Design/methodology/approach
This paper develops a methodology that uses principal component analysis to generalize the seismic factors from the basic seismic parameters of school buildings, uses data mining to cluster different school building sizes and uses grey theory to analyze the relationship between seismic factors and the seismic performance of school buildings. Additionally, this paper employs the Artificial Neural Network (ANN) to deduce the seismic assessment model for school buildings. Finally, it adopts support vector machine to validate the ANN’s deductive results.
Findings
An empirical study was conducted on 326 school buildings in the central area of Taichung City, Taiwan, to illustrate the effectiveness of the proposed approach. Results show that thickness of wall and width of middle-row column relate significantly with school-building seismic performance.
Originality/value
This paper provides a model that structural engineers or architects may use to design school buildings that are adequately resistant to earthquakes as well as a reference for future academic research.
Keywords
Acknowledgements
The author thanks Prof Shyh-Jiann Hwang, Prof Lap-Loi Chung, and Mr Tsung-Chih Chiou at the National Center for Research on Earthquake Engineering (NCREE) for kindly providing data related to the seismic performance of school buildings in Taiwan.
Citation
Chen, C.-S. (2020), "Seismic performance assessments of school buildings in Taiwan using artificial intelligence theories", Engineering Computations, Vol. 37 No. 9, pp. 3321-3343. https://doi.org/10.1108/EC-09-2019-0400
Publisher
:Emerald Publishing Limited
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